You are currently viewing A CEO’s guide to investing into AI/ML

A CEO’s guide to investing into AI/ML

A CEO’s non-technical guide to investing into Machine Learning and Data Science

CEOs are contending with a lot of technology buzz words. In this article I intend to convert the discussion about Data Science and Machine Learning into a business discussion. I will propose a few simple questions and make some assertions based on my experience with helping organizations big and small with these questions.

How do I separate hype from reality?

In addition to traditional technology acquisition finance models that focus on value delivery and cost of obsolescence, add greater emphasis to technology risk as a gating factor for approving investments.

Here is a summary of technology risks with various AI/ML technology components.

Can your organization execute on these projects?

Skill gap, labor market tightness, lack of management bandwidth are endemic, how can a firm execute on new opportunities in this market?

Organizations are trying the following:

  1. Depending upon existing blue chip vendors to bring in this technology at their own pace.
  2. Creating a new office of Chief Innovation Officer/CTO/Chief Digital officer etc.,
  3. Investing heavily into HR to deal with skill gap and tight labor market.

I recommend adding the following additional strategies:

  1. Build and nurture relationships with small boutiques that take on 100% of the technology risk in these projects. Subscribe to and pay for successful solutions.
  2. Drive highly iterative culture into your technology acquisition projects.
  3. Significantly improve your firm’s ability to pull innovation from bottom up.
  4. Increase your ability to make equity investments into small tech firms that are trying to disrupt your markets.

Data driven intelligent automation has crossed a threshold of economic viability. Let the games begin!!